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DIAGNOSIS OF LUNG NODULES FROM 2D COMPUTER TOMOGRAPHY SCANS

机译:2D计算机断层扫描扫描的肺结节诊断

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Cancers typically are both highly dangerous and common. Among these, lung cancer has one of the lowest survival rates compared to other cancers. CT scans can reveal dense masses of different shapes and sizes; in the lungs, these are called lung nodules. This study applied a computer-aided diagnosis (CAD) system to detect candidate nodules - and diagnose it either solitary or juxtapleural - with equivalent diameters, ranging from 7.78 mm to 22.48 mm in a 2D CT slice. Pre-processing and segmentation is a very important step to segment and enhance the CT image. A segmentation and enhancement algorithm is achieved using bilateral filtering, Thresholding the gray-level transformation function, Bounding box and maximum intensity projection. Border artifacts are removed by clearing the lung border, erosion, dilation and superimposing. Feature extraction is done by extracting 20 gray-level co-occurrence matrix features from four directions: 0 degrees, 45 degrees, 90 degrees and 135 degrees and one distance of separation (d = 1 pixel). In the classification step, two classifiers are proposed to classify two types of nodules based on their locations: as juxtapleural or solitary nodules. The two classifiers are a deep learning convolutional neural network (CNN) and the K-nearest neighbor (KNN) algorithm. Random oversampling and 10-fold cross-validation are used to improve the results. In our CAD system, the highest accuracy and sensitivity rates achieved by the CNN were 96% and 95%, respectively, for solitary nodule detection. The highest accuracy and sensitivity rates achieved by the KNN model were 93.8% and 96.7%, respectively, and K was set to 1 to detect juxtapleural nodules.
机译:癌症通常既高危险又常见。其中,与其他癌症相比,肺癌具有最低的存活率之一。 CT扫描可以揭示密集的不同形状和尺寸;在肺中,这些称为肺结节。该研究应用了一种计算机辅助诊断(CAD)系统来检测候选结节 - 并诊断孤立或七叶件 - 具有当量直径,在2D CT切片中的7.78mm至22.48mm。预处理和分割是对分段和增强CT图像的非常重要的步骤。使用双侧滤波来实现分割和增强算法,阈值平衡灰级变换功能,边界框和最大强度投影。通过清除肺部边框,侵蚀,扩张和叠加来删除边框伪影。通过从四个方向提取20个灰度共发生矩阵特征来完成特征提取:0度,45度,90度和135度,并且分离距离(D = 1像素)。在分类步骤中,提出了两种分类器,以基于其位置对两种类型的结节进行分类:作为Juxtaperal或孤立的结节。两个分类器是深度学习卷积神经网络(CNN)和K最近邻(KNN)算法。随机过采样和10倍的交叉验证用于改善结果。在我们的CAD系统中,CNN实现的最高精度和灵敏度分别为96%和95%,用于孤立结节检测。通过KNN模型实现的最高精度和灵敏度分别为93.8%和96.7%,k设定为1以检测JUXTAPURY NODULES。

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